Lindiwe-22/Strait-of-Hormuz-Crisis-2026
Data-driven intelligence analysis of the 2026 US-Iran War. Investigating how the Strait of Hormuz closure disrupted global oil prices across 14 countries and forecasting the impact on maritime trade volumes using World Bank data, ML modelling and 3-scenario forecasting.
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Mar 22, 2026
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